4.7 Article

Saving time maintaining reliability: a new method for quantification ofTetranychus urticaedamage in Arabidopsis whole rosettes

期刊

BMC PLANT BIOLOGY
卷 20, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12870-020-02584-0

关键词

Arabidopsis thaliana; Assess; Chlorotic spots; CompuEye; Ilastik; Fiji; Photoshop; Plant damage quantification; Tetranychus urticae; Machine learning

资金

  1. Ministerio de Economia y Competitividad [BIO2017-83472-R, RYC-2017-21814]
  2. la Caixa foundation [100010434, LCF/BQ/IN18/11660014]
  3. European Union's Horizon 2020 research and innovation programme under the Marie Sklodowska-Curie grant [713673]
  4. [APOYO-JOVENESSUR6Q9-22-YTFC3Z]

向作者/读者索取更多资源

Background The model speciesTetranychus urticaeproduces important plant injury and economic losses in the field. The current accepted method for the quantification of the spider mite damage in Arabidopsis whole rosettes is time consuming and entails a bottleneck for large-scale studies such as mutant screening or quantitative genetic analyses. Here, we describe an improved version of the existing method by designing an automatic protocol. The accuracy, precision, reproducibility and concordance of the new enhanced approach are validated in two Arabidopsis accessions with opposite damage phenotypes. Results are compared to the currently available manual method. Results Image acquisition experiments revealed that the automatic settings plus 10 values of brightness and the black background are the optimal conditions for a specific recognition of spider mite damage by software programs. Among the different tested methods, the Ilastik-Fiji tandem based on machine learning was the best procedure able to quantify the damage maintaining the differential range of damage between accessions. In addition, the Ilastik-Fiji tandem method showed the lowest variability within a set of conditions and the highest stability under different lighting or background surroundings. Bland-Altman concordance results pointed out a negative value for Ilastik-Fiji, which implies a minor estimation of the damage when compared to the manual standard method. Conclusions The novel approach using Ilastik and Fiji programs entails a great improvement for the quantification of the specific spider mite damage in Arabidopsis whole rosettes. The automation of the proposed method based on interactive machine learning eliminates the subjectivity and inter-rater-variability of the previous manual protocol. Besides, this method offers a robust tool for time saving and to avoid the damage overestimation observed with other methods.

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